Abstract

This paper presents a new fault detection scheme for stochastic distribution systems with non-Gaussian variables based on a probabilistic framework. The available information is the output probability density function (PDF) rather than the measured outputs themselves. The square-root B-spline function is utilized to formulate the output PDFs. Probabilistic parameter models are developed to characterize system uncertainties and faults. An observer is designed to detect the multiplicative and additive faults. The randomized algorithm is adopted to design the threshold to achieve an optimal balance between the false alarm and fault detection rate. The effectiveness of the proposed method is demonstrated and compared against existing work by utilizing a continuous stirred tank reactor system.

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